Unified Description of Learning Dynamics in the Soft Committee Machine from Finite to Ultra-Wide Regimes

Abstract

We study the learning dynamics of the soft committee machine (SCM) with Rectified Linear Unit (ReLU) activation using a statistical-mechanics approach within the annealed approximation. The SCM consists of a student network with N input units and K hidden units trained to reproduce the output of a teacher network with M hidden units. We introduce a reduced set of macroscopic order parameters that yields a unified description valid from the conventional regime K N to the ultra-wide limit K N. The control parameter α, proportional to the ratio of training samples to adjustable weights, serves as an effective measure of dataset size. For small γ = M/N, we recover a continuous phase transition at αc ≈ 2π from an unspecialized, permutation-symmetric state to a specialized state in which student units align with the teacher. For finite γ, the transition disappears and the generalization error decreases smoothly with dataset size, reaching a low plateau when γ=1. In the asymptotic limit α ∞, the error scales as g 1/α, independent of γ and K. The results highlight the central role of network dimensions in SCM learning and provide a framework extendable to other activations and quenched analyses.

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